TY - JOUR ID - 66675 TI - The use of computational intelligence base models in suspended sediment load estimation (Case study: Gillan province) JO - Journal of Range and Watershed Managment JA - JRWM LA - en SN - 5044-2008 AU - Asadi, Maryam AU - Fathzadeh, Ali AD - M.Sc. Student of watershed management/Ardakan University AD - Academic Staff / Ardakan University, Faculty of Agr. and Natural Resources Y1 - 2018 PY - 2018 VL - 71 IS - 1 SP - 45 EP - 60 KW - Suspended sediment load KW - Sediment Rating Curve KW - Gaussian process KW - Data Mining KW - artificial intelligent DO - 10.22059/jrwm.2018.222810.1083 N2 - Understanding of suspended sediment rate is one of the fundamental problems in water projects which water engineers consistently have involved with it. Wrong estimations in sediment transport cause incorrect design and destruction of hydraulic systems. Due to the difficulty of suspended sediment measurements, sediment rating curves is considered as the most common method for estimating the suspended sediment load. The main purpose of this research is the capability challenge of this method in comparison to some state of the art models. In this study, we selected some computational intelligence models (i.e. K-nearest neighbor (KNN), artificial neural networks (ANN), Gaussian processes (GP), decision trees of M5, support vector machine (SVM) and evolutionary support vector machine (ESVM)) and compared them with their sediment rating model in 8 basins located in Gilan province. Daily sediment and discharge data considered as the input data for 30-years. Evaluation of the results indicated that the Gaussian process model has the lowest residual sum of squares (RMSE) and the highest correlation coefficient (r) than the other models. UR - https://jrwm.ut.ac.ir/article_66675.html L1 - https://jrwm.ut.ac.ir/article_66675_4058de19c54e2f568c96803a40f0b1db.pdf ER -